Journal of Jilin University (Information Science Edition) ›› 2024, Vol. 42 ›› Issue (2): 339-347.

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esearch on Visual Android Malware Detection Based on Swin-Transformer

WANG Haikuan, YUAN Jinming   

  1. Department of Information Engineering, Jincheng Vocational and Technical College, Jincheng 048026, China
  • Online:2024-04-10 Published:2024-04-12

Abstract: The connection between mobile internet devices based on the Android platform and people’s lives is becoming increasingly close, and the security issues of mobile devices have become a major research hotspot. Currently, many visual Android malware detection methods based on convolutional neural networks have been proposed and have shown good performance. In order to better utilize deep learning frameworks to prevent malicious software attacks on the Android platform, a new application visualization method is proposed, which to some extent compensates for the information loss problem caused by traditional sampling methods. In order to obtain more accurate software representation vectors, this study uses the Swin Transformer architecture instead of the traditional CNN(Convolutional Neural Network) architecture as the backbone network for feature extraction. The samples used in the research experiment are from the Drebin and CICCalDroid 2020 datasets. The research experimental results show that the proposed visualization method is superior to traditional visualization methods, and the detection system can achieve an accuracy of 97. 39% , with a high ability to identify malicious software.

Key words: Android malware, deep learning, computer vision 

CLC Number: 

  • TP311